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#037 - Tour De Bayesian with Connor Tann

Machine Learning Street Talk (MLST)

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Understanding Bayesian Priors and Scale Invariance

This chapter explores the intuition behind Jeffrey's prior in Bayesian statistics, emphasizing scale invariance and its implications for measurement. It illustrates the importance of selecting appropriate prior distributions and the challenges posed by uniformity in various dimensions, particularly in hierarchical modeling. The discussion also highlights the role of Markov Chain Monte Carlo methods in refining priors and tackling computational complexities in Bayesian modeling.

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